交通运输系统工程与信息 ›› 2023, Vol. 23 ›› Issue (6): 206-214.DOI: 10.16097/j.cnki.1009-6744.2023.06.021

• 系统工程理论与方法 • 上一篇    下一篇

建成环境对轨道交通站点客流量与通勤乘车率影响的差异化分析

庞磊,任利剑*,运迎霞   

  1. 天津大学,建筑学院,天津 300072
  • 收稿日期:2023-08-09 修回日期:2023-10-11 接受日期:2023-10-19 出版日期:2023-12-25 发布日期:2023-12-23
  • 作者简介:庞磊(1993- ),男,山东寿光人,博士生。
  • 基金资助:
    国家自然科学基金(52278070)

Analysis of Differential Impact of Built Environment on Passenger Flow and Commuter Ridership Rate of Urban Rail Transit Station

PANG Lei,REN Li-jian*,YUN Ying-xia   

  1. School of Architecture, Tianjin University, Tianjin 300072, China
  • Received:2023-08-09 Revised:2023-10-11 Accepted:2023-10-19 Online:2023-12-25 Published:2023-12-23
  • Supported by:
    National Natural Science Foundation of China (52278070)

摘要: 建成环境与轨道交通出行特征之间联系密切,然而既有研究主要致力于探究建成环境对轨道交通站点客流量的影响,较少对站点通勤乘车率进行分析。站点客流量体现了轨道交通的运输强度,而站点通勤乘车率体现了轨道交通的分担能力,两者对于轨道交通客流运营效益都有重要影响。本文基于轨道交通智能刷卡数据与手机信令数据提出测度站点通勤乘车率的方法, 采用多尺度地理加权回归模型(MGWR)探究并对比建成环境对站点客流量与通勤乘车率影响的差异。针对天津的研究案例表明:轨道交通站点客流量由城市中心向外围地区呈递减式空间分布,而通勤乘车率则由城市中心向外围地区呈递增式空间分布;影响站点客流量与通勤乘车率的建成环境因素既存在显著差异性又具有相似性,其中站点距公交站点平均距离是影响两者的全局变量且有显著负向作用;建成环境局部影响变量对站点客流量与通勤乘车率的作用强度及方向存在空间异质性。建成环境对站点客流量与通勤乘车率影响的差异说明:针对这两项不同的客流特征指标,不仅要考虑建成环境因素对其作用的种类差异,还要考虑建成环境局部影响变量对其空间效应的差异;在未来规划中应采取分类协同配置、分区划级干预的差异化策略,统筹激活建成环境因素的异质效应以综合提升站点客流运营效益。

关键词: 城市交通, 通勤乘车率, 多尺度地理加权回归, 城市轨道交通, 空间异质性

Abstract: There is a significant relationship between the built environment and the characteristics of urban rail transit ridership. However, existing studies mainly focus on the impact of built environment on passenger flow of urban rail transit stations, and rarely analyze the commuter ridership rate of stations. Station passenger flow reflects the transportation intensity of urban rail transit, while station commuter ridership rate reflects the sharing capacity of urban rail transit, both of which have an important impact on the operational effectiveness of passenger flow. This study proposed a method to measure the commuter ridership rate of urban rail transit stations based on urban rail transit smart card data and cell phone signaling data, and utilized a multi-scale geographically weighted regression (MGWR) model to investigate and compare the differences in the impact of the built environment on the passenger flow and commuter ridership rate of the stations. The study case in Tianjin of China indicated that: the passenger flow of urban rail transit stations showed a decreasing spatial distribution from the center of the city to the suburbs, while the commuter ridership rate showed an increasing spatial distribution from the center of the city to the suburbs. There were both significant differences and similarities in the built environment factors affecting station passenger flow and commuter ridership rate, with the average distance of a station from a transit stop being the global variable affecting both and having a significant negative effect. There existed spatial heterogeneity in the intensity and direction of the effect of local influence variables in the built environment on station passenger flow and commuter ridership rate. The differences in the effects of the built environment on station passenger flow and commuter ridership rate indicated that it was important to consider not only the differences in the types of built environment factors contributing to these two different indicators of passenger flow characteristics, but also the differences in the spatial effects of localized influences on the built environment. In the future planning, the classification of synergistic configuration, zoning level intervention of differentiated strategies, integrated activation of the built environment factors of the heterogeneous effect should be considered to comprehensively enhance the station passenger flow operational efficiency.

Key words: urban traffic, commuter ridership rate, multiscale geographically weighted regression, urban rail transit, spatial heterogeneity

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